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Multi-Class Model Fitting by Energy Minimization and Mode-Seeking

About

We propose a general formulation, called Multi-X, for multi-class multi-instance model fitting - the problem of interpreting the input data as a mixture of noisy observations originating from multiple instances of multiple classes. We extend the commonly used alpha-expansion-based technique with a new move in the label space. The move replaces a set of labels with the corresponding density mode in the model parameter domain, thus achieving fast and robust optimization. Key optimization parameters like the bandwidth of the mode seeking are set automatically within the algorithm. Considering that a group of outliers may form spatially coherent structures in the data, we propose a cross-validation-based technique removing statistically insignificant instances. Multi-X outperforms significantly the state-of-the-art on publicly available datasets for diverse problems: multiple plane and rigid motion detection; motion segmentation; simultaneous plane and cylinder fitting; circle and line fitting.

Daniel Barath, Jiri Matas• 2017

Related benchmarks

TaskDatasetResultRank
Homography fittingAdelaideRMF Homographies 19 scenes
Avg Misclassification Error8.7
10
Two-view motion fittingAdelaideRMF Two-view motions 19 scenes
Avg. Misclassification Error17.1
9
Object motion segmentationHopkins Traffic3 45
Mean Misclassification Error32
8
Motion SegmentationHopkins Motions 155 scenes
Avg Misclassification Error13
8
Object motion segmentationHopkins Traffic2 45
Mean Misclassification Error9
7
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